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2016 | 14 (20) | 131-144

Article title

Wykorzystanie sieci bayesowskich do prognozowania bankructwa firm

Authors

Content

Title variants

EN
Bankruptcy prediction with Bayesian networks

Languages of publication

PL EN

Abstracts

EN
The aim of the paper is to compare accuracy of some bankruptcy prediction models based on Bayesian networks. Some network structure learning algorithms were analyzed as a tool for classifiers construction. Empirical analysis was applied to companies listed on Warsaw Stock Exchange. The paper gives short overview of theoretical background behind discussed issues and presents results of empirical analysis.

Year

Issue

Pages

131-144

Physical description

Contributors

author

References

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Document Type

Publication order reference

Identifiers

YADDA identifier

bwmeta1.element.desklight-7da5c5c7-9757-476b-a52a-2bcaf637420e
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